The persistent and graded activity often observed in cortical circuits is sometimes seen as a signature of autoassociative retrieval of memories stored earlier in synaptic efficacies. However, despite decades of theoretical work on the subject, the mechanisms that support the storage and retrieval of memories remain unclear. Previous proposals concerning the dynamics of memory networks have fallen short of incorporating some key physiological constraints in a unified way. Specifically, some models violate Dale's law (i.e. allow neurons to be both excitatory and inhibitory), while some others restrict the representation of memories to a binary format, or induce recall states in which some neurons fire at rates close to saturation. We propose...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
It is shown that in those autoassociative memories that learn by storing multiple patterns of activi...
We describe a modified attractor neural network in which neuronal dynamics takes place on a time sca...
The persistent and graded activity often observed in cortical circuits is some-times seen as a signa...
A fundamental problem in neuroscience is understanding how working memory—the ability to store infor...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
Pas de résumé en françaisIt is generally maintained that one of cortex’ functions is the storage of ...
Cortical neurons are predominantly excitatory and highly interconnected. In spite of this, the corte...
Abstract. According to a popular hypothesis, short-term memories are stored as persistent neural act...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Substantial evidence suggests that hippocampal area CA3 is involved in autoassociative memory. The m...
Attractor networks are an influential theory for memory storage in brain systems. This theory has re...
The ability of sensory networks to transiently store information on the scale of seconds can confer ...
Abstract Persistent activity in neuronal populations has been shown to represent the spatial positio...
Persistent neural activity is observed in many systems, and is thought to be a neural substrate for ...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
It is shown that in those autoassociative memories that learn by storing multiple patterns of activi...
We describe a modified attractor neural network in which neuronal dynamics takes place on a time sca...
The persistent and graded activity often observed in cortical circuits is some-times seen as a signa...
A fundamental problem in neuroscience is understanding how working memory—the ability to store infor...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
Pas de résumé en françaisIt is generally maintained that one of cortex’ functions is the storage of ...
Cortical neurons are predominantly excitatory and highly interconnected. In spite of this, the corte...
Abstract. According to a popular hypothesis, short-term memories are stored as persistent neural act...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Substantial evidence suggests that hippocampal area CA3 is involved in autoassociative memory. The m...
Attractor networks are an influential theory for memory storage in brain systems. This theory has re...
The ability of sensory networks to transiently store information on the scale of seconds can confer ...
Abstract Persistent activity in neuronal populations has been shown to represent the spatial positio...
Persistent neural activity is observed in many systems, and is thought to be a neural substrate for ...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
It is shown that in those autoassociative memories that learn by storing multiple patterns of activi...
We describe a modified attractor neural network in which neuronal dynamics takes place on a time sca...